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Applied Optics

Applied Optics

APPLICATIONS-CENTERED RESEARCH IN OPTICS

  • Vol. 43, Iss. 2 — Jan. 10, 2004
  • pp: 257–263

Point target detection and subpixel position estimation in optical imagery

Vincent Samson, Frédéric Champagnat, and Jean-François Giovannelli  »View Author Affiliations


Applied Optics, Vol. 43, Issue 2, pp. 257-263 (2004)
http://dx.doi.org/10.1364/AO.43.000257


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Abstract

We address the issue of distinguishing point objects from a cluttered background and estimating their position by image processing. We are interested in the specific context in which the object’s signature varies significantly relative to its random subpixel location because of aliasing. The conventional matched filter neglects this phenomenon and causes a consistent degradation of detection performance. Thus alternative detectors are proposed, and numerical results show the improvement brought by approximate and generalized likelihood-ratio tests compared with pixel-matched filtering. We also study the performance of two types of subpixel position estimator. Finally, we put forward the major influence of sensor design on both estimation and point object detection.

© 2004 Optical Society of America

OCIS Codes
(040.1880) Detectors : Detection
(100.0100) Image processing : Image processing
(100.5010) Image processing : Pattern recognition

History
Original Manuscript: May 16, 2003
Revised Manuscript: August 6, 2003
Published: January 10, 2004

Citation
Vincent Samson, Frédéric Champagnat, and Jean-François Giovannelli, "Point target detection and subpixel position estimation in optical imagery," Appl. Opt. 43, 257-263 (2004)
http://www.opticsinfobase.org/ao/abstract.cfm?URI=ao-43-2-257


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